Predicting Influent and Effluent Quality Parameters for a UASB-Based Wastewater Treatment Plant in Asia Covering Data Variations during COVID-19: A Machine Learning Approach

A region’s population growth inevitably results in higher water consumption. This persistent rise in water use increases the region’s wastewater production. Consequently, due to this increase in wastewater (influent), Wastewater Treatment Plants (WWTPs) are required to run effectively in order to ha...

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Veröffentlicht in:Water (Basel) 2023-02, Vol.15 (4), p.710
Hauptverfasser: Yadav, Parul, Chandra, Manik, Fatima, Nishat, Sarwar, Saqib, Chaudhary, Aditya, Saurabh, Kumar, Yadav, Brijesh Singh
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container_issue 4
container_start_page 710
container_title Water (Basel)
container_volume 15
creator Yadav, Parul
Chandra, Manik
Fatima, Nishat
Sarwar, Saqib
Chaudhary, Aditya
Saurabh, Kumar
Yadav, Brijesh Singh
description A region’s population growth inevitably results in higher water consumption. This persistent rise in water use increases the region’s wastewater production. Consequently, due to this increase in wastewater (influent), Wastewater Treatment Plants (WWTPs) are required to run effectively in order to handle the huge demand for treated/processed water (effluent). Knowing in advance the influent and effluent parameters increases the operational efficiency and enables cost-effective utilization of diverse resources at wastewater treatment plants. This paper is based on a prediction/forecasting of an influent quality parameter, namely total MLD, as well as effluent quality parameters, namely MPN, BOD, DO, COD and pH for the real-time data collected pre-, during and post-COVID-19 at the Bharwara WWTP in Lucknow, India. It is the largest UASB-based wastewater treatment facility in Uttar Pradesh and the second largest in Asia. In this paper, we propose a novel model namely, wPred comprising extensions of SARIMA with seasonal order and ANN-based ML models to estimate the influent and effluent quality parameters, respectively, and compare it with the existing machine learning models. The lowest sMAPE error for the influent parameters using wPred is 2.59%. The findings of the paper show a strong correlation (R-value), up to 0.99, between the effluent parameters actually measured and predicted. As a result, the model designed in this paper has an acceptable level of accuracy and generalizability which efficiently predicts/forecasts the performance of Bharwara WWTP.
doi_str_mv 10.3390/w15040710
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source MDPI - Multidisciplinary Digital Publishing Institute; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Analysis
Asia
By products
Chemical oxygen demand
Coronaviruses
cost effectiveness
COVID-19
COVID-19 infection
Efficiency
Effluent quality
Effluents
India
Irrigation
Learning algorithms
Lubricants & lubrication
Machine learning
Neural networks
Pesticides
Population growth
prediction
Purification
Sewage
wastewater
Wastewater treatment
Wastewater treatment plants
water
Water consumption
Water treatment
Water treatment plants
Water use
title Predicting Influent and Effluent Quality Parameters for a UASB-Based Wastewater Treatment Plant in Asia Covering Data Variations during COVID-19: A Machine Learning Approach
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